Scale-Adaptive filters for the detection/separation of compact sources
Abstract
This paper presents scale-adaptive filters that optimize the detection/separation of compact sources on a background. We assume that the sources have a multiquadric profile, i. e. τ (x) = [1 + (x/rc)2]-λ, λ ≥ 1/2, x |x|, and a background modeled by a homogeneous and isotropic random field, characterized by a power spectrum P(q) q-γ, γ ≥ 0, q |q|. We make an n-dimensional treatment but consider two interesting astrophysical applications related to clusters of galaxies (Sunyaev-Zel'dovich effect and X-ray emission).
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